In this paper we discuss short term traffic congestion prediction, more specifically, prediction of the sudden speed drop when traffic resides at the critical density point. We approach this problem using standard machine learning techniques combining information from multiple sensors measuring density and average velocity. The model used for prediction is learned offline. Our goal is to implement (and possibly update) the predictive model in a multi-agent system, where coupled with each sensor, there is an agent that monitors the condition of traffic, starts to collect data from other sensors located nearby when necessary and is able to predict local sudden speed drops so that drivers can be warned ahead of time. We evaluate Gaussian proce...
This study attempts to develop a model that forecasts precise data on traffic flow. Everything that ...
We optimize traffic signal timing sequences for a section of a traffic net-work in order to reduce c...
This thesis brings a collection of novel models and methods that result from a new look at practical...
Congestion is a challenge that commuters have to deal with on a daily basis. Consequently, predictin...
This thesis is submitted in partial fulfilment of the requirements for the degree of Bachelor of Sci...
In recent years, traffic congestion prediction has led to a growing research area, especially of mac...
Traffic management is being more important than ever, especially in overcrowded big cities with over...
Short-term traffic prediction is a key component of Intelligent Transportation Systems. It uses hist...
Recently, modern tracking methods started to allow capturing the position of massive numbers of movi...
Traffic prediction plays a crucial role in an intelligent transportation system (ITS) for enabling a...
Detecting, predicting, and alleviating traffic congestion are targeted at improving the level of ser...
Accurate traffic volume prediction plays a crucial role in urban traffic control by relieving conges...
Road traffic congestion is an increasing societal problem. Road agencies and users seeks accurate an...
Congestion on road networks has a negative impact on sustainability in many cities through the exace...
The focus of this research is on the estimation of traffic density from data obtained from Connected...
This study attempts to develop a model that forecasts precise data on traffic flow. Everything that ...
We optimize traffic signal timing sequences for a section of a traffic net-work in order to reduce c...
This thesis brings a collection of novel models and methods that result from a new look at practical...
Congestion is a challenge that commuters have to deal with on a daily basis. Consequently, predictin...
This thesis is submitted in partial fulfilment of the requirements for the degree of Bachelor of Sci...
In recent years, traffic congestion prediction has led to a growing research area, especially of mac...
Traffic management is being more important than ever, especially in overcrowded big cities with over...
Short-term traffic prediction is a key component of Intelligent Transportation Systems. It uses hist...
Recently, modern tracking methods started to allow capturing the position of massive numbers of movi...
Traffic prediction plays a crucial role in an intelligent transportation system (ITS) for enabling a...
Detecting, predicting, and alleviating traffic congestion are targeted at improving the level of ser...
Accurate traffic volume prediction plays a crucial role in urban traffic control by relieving conges...
Road traffic congestion is an increasing societal problem. Road agencies and users seeks accurate an...
Congestion on road networks has a negative impact on sustainability in many cities through the exace...
The focus of this research is on the estimation of traffic density from data obtained from Connected...
This study attempts to develop a model that forecasts precise data on traffic flow. Everything that ...
We optimize traffic signal timing sequences for a section of a traffic net-work in order to reduce c...
This thesis brings a collection of novel models and methods that result from a new look at practical...